| 1 | Course Title: | MACHINE LEARNING |
| 2 | Course Code: | BLPS2414 |
| 3 | Type of Course: | Optional |
| 4 | Level of Course: | Short Cycle |
| 5 | Year of Study: | 2 |
| 6 | Semester: | 4 |
| 7 | ECTS Credits Allocated: | 3 |
| 8 | Theoretical (hour/week): | 2 |
| 9 | Practice (hour/week) : | 0 |
| 10 | Laboratory (hour/week) : | 0 |
| 11 | Prerequisites: | None |
| 12 | Recommended optional programme components: | None |
| 13 | Language: | Turkish |
| 14 | Mode of Delivery: | Face to face |
| 15 | Course Coordinator: | Öğr. Gör. AHMET DARTAR |
| 16 | Course Lecturers: | -- |
| 17 | Contactinformation of the Course Coordinator: |
ahmetdartar@uludag.edu.tr, (0 224) 294 26 62, Bursa Uludağ Üniversitesi Karacabey MYO Bilgisayar Programcılığı |
| 18 | Website: | |
| 19 | Objective of the Course: | The aim of this course is to provide students with the theoretical basis of machine learning algorithms and practical application of them on real-world data sets. |
| 20 | Contribution of the Course to Professional Development | For a problem whose parameters are given, the student can reveal the advantages and disadvantages of different machine learning methods. |
| 21 | Learning Outcomes: |
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| 22 | Course Content: |
| Week | Theoretical | Practical |
| 1 | Introduction to Machine Learning | |
| 2 | Applications of Machine Learning | |
| 3 | Data Digitization | |
| 4 | Feature Selection/Extraction | |
| 5 | Regression Algorithms | |
| 6 | Classification Algorithms (Support Vector Machine) | |
| 7 | Classification Algorithms (Artificial Neural Network) | |
| 8 | Mid-term exam | |
| 9 | Classification Algorithms (K-nearest Neighbor Algorithm) | |
| 10 | Classification Algorithms (Naive Bayes Algorithm) | |
| 11 | Classification Algorithms (Decision Tree) | |
| 12 | Clustering Algorithms (K-Means Algorithm) | |
| 13 | Clustering Algorithms (Single Linkage Clustering Algorithm-SLINK/Complete Linkage Clustering Algorithm-CLINK) | |
| 14 | Ensemble Learning Algorithms and Classifier Performance |
| 23 | Textbooks, References and/or Other Materials: |
1-Ethem ALPAYDIN (2010). Introduction to Machine Learning, The MIT Press, second edition. 2-Tom Mitchell,McGraw-Hill. Machine Learning. ISBN 0070428077. 3-Atınç Yılmaz, Makine Öğrenmesi: Teorisi ve Algoritmaları, Papatya Bilim Yayınevi, 2018 |
| 24 | Assesment |
| TERM LEARNING ACTIVITIES | NUMBER | PERCENT |
| Midterm Exam | 1 | 40 |
| Quiz | 0 | 0 |
| Homeworks, Performances | 0 | 0 |
| Final Exam | 1 | 60 |
| Total | 2 | 100 |
| Contribution of Term (Year) Learning Activities to Success Grade | 40 | |
| Contribution of Final Exam to Success Grade | 60 | |
| Total | 100 | |
| Measurement and Evaluation Techniques Used in the Course | Measurement and evaluation is carried out according to the principles of Bursa uludag University Associate and Undergraduate Education | |
| Information | Results are determined with the letter grade determined by the student automation system. | |
| 25 | ECTS / WORK LOAD TABLE |
| Activites | NUMBER | TIME [Hour] | Total WorkLoad [Hour] |
| Theoretical | 14 | 2 | 28 |
| Practicals/Labs | 0 | 0 | 0 |
| Self Study and Preparation | 14 | 2 | 28 |
| Homeworks, Performances | 0 | 2 | 28 |
| Projects | 0 | 0 | 0 |
| Field Studies | 0 | 0 | 0 |
| Midtermexams | 1 | 3 | 3 |
| Others | 0 | 0 | 0 |
| Final Exams | 1 | 3 | 3 |
| Total WorkLoad | 93 | ||
| Total workload/ 30 hr | 3 | ||
| ECTS Credit of the Course | 3 |
| 26 | CONTRIBUTION OF LEARNING OUTCOMES TO PROGRAMME QUALIFICATIONS | |||||||||||||||||||||||||||||||||||||||||||||
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| LO: Learning Objectives | PQ: Program Qualifications |
| Contribution Level: | 1 Very Low | 2 Low | 3 Medium | 4 High | 5 Very High |